Segmentation of Liver in Low-Contrast Images Using K-Means Clustering and Geodesic Active Contour Algorithms

In this paper, we present an algorithm to segment the liver in low-contrast CT images. As the first step of our algorithm, we define a search range for the liver boundary. Then, the EM algorithm is utilized to estimate parameters of a ‘Gaussian Mixture’ model that conforms to the intensity distribut...

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Veröffentlicht in:IEICE Transactions on Information and Systems 2013/04/01, Vol.E96.D(4), pp.798-807
Hauptverfasser: FORUZAN, Amir H., CHEN, Yen-Wei, ZOROOFI, Reza A., FURUKAWA, Akira, SATO, Yoshinobu, HORI, Masatoshi, TOMIYAMA, Noriyuki
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Sprache:eng ; jpn
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Zusammenfassung:In this paper, we present an algorithm to segment the liver in low-contrast CT images. As the first step of our algorithm, we define a search range for the liver boundary. Then, the EM algorithm is utilized to estimate parameters of a ‘Gaussian Mixture’ model that conforms to the intensity distribution of the liver. Using the statistical parameters of the intensity distribution, we introduce a new thresholding technique to classify image pixels. We assign a distance feature vectors to each pixel and segment the liver by a K-means clustering scheme. This initial boundary of the liver is conditioned by the Fourier transform. Then, a Geodesic Active Contour algorithm uses the boundaries to find the final surface. The novelty in our method is the proper selection and combination of sub-algorithms so as to find the border of an object in a low-contrast image. The number of parameters in the proposed method is low and the parameters have a low range of variations. We applied our method to 30 datasets including normal and abnormal cases of low-contrast/high-contrast images and it was extensively evaluated both quantitatively and qualitatively. Minimum of Dice similarity measures of the results is 0.89. Assessment of the results proves the potential of the proposed method for segmentation in low-contrast images.
ISSN:0916-8532
1745-1361
DOI:10.1587/transinf.E96.D.798